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Image-Based Machine Learning for Reduction of User Fatigue in an Interactive Model Calibration System

机译:交互式模型校准系统中基于图像的机器学习可减少用户疲劳

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The interactive multiobjective genetic algorithm (IMOGA) is a promising new approach to calibrate models. The IMOGA combines traditional optimization with an interactive framework, thus allowing both quantitative calibration criteria as well as the subjective knowledge of experts to drive the search for model parameters. One of the major challenges in using such interactive systems is the burden they impose on the experts that interact with the system. This paper proposes the use of a novel image-based machine-learning (IBML) approach to reduce the number of user interactions required to identify promising calibration solutions involving spatially distributed parameter fields (e.g., hydraulic conductivity parameters in a groundwater model). The first step in the IBML approach involves selecting a few highly representative solutions for expert ranking. The selection is performed using unsupervised clustering approaches from the field of image processing, which group potential parameter fields based on their spatial similarities. The expert then ranks these representative solutions, after which a machine-learning model (augmented with the spatial information of the selected fields) is trained to learn user preferences and predict rankings for solutions not ranked by the expert. To better mimic the "visual" information processing of human experts, algorithms from the field of image processing are used to mine information about the spatial characteristics of parameter fields, thus improving the performance of the clustering and machine-learning algorithms. The IBML approach is tested and demonstrated on a groundwater calibration problem and is shown to lead to significant improvements, reducing the amount of user interaction by as much as half without compromising the solution quality of the IMOGA.
机译:交互式多目标遗传算法(IMOGA)是一种有前途的校准模型新方法。 IMOGA将传统的优化与交互式框架相结合,从而允许定量校准标准以及专家的主观知识来推动模型参数的搜索。使用这种交互式系统的主要挑战之一是它们给与系统交互的专家带来的负担。本文提出了一种新颖的基于图像的机器学习(IBML)方法,以减少识别涉及空间分布参数字段(例如地下水模型中的水力传导率参数)的有希望的校准解决方案所需的用户交互次数。 IBML方法的第一步涉及为专家排名选择一些具有高度代表性的解决方案。使用来自图像处理领域的无监督聚类方法进行选择,该方法基于潜在的参数字段的空间相似性对其进行分组。然后,专家对这些代表性解决方案进行排名,然后训练机器学习模型(使用所选字段的空间信息进行增强),以学习用户偏好并预测未由专家排名的解决方案的排名。为了更好地模仿人类专家的“视觉”信息处理,使用了图像处理领域的算法来挖掘有关参数字段空间特征的信息,从而提高了聚类和机器学习算法的性能。 IBML方法已针对地下水校准问题进行了测试和演示,并被证明可以带来重大改进,在不影响IMOGA解决方案质量的情况下,将用户交互量减少了一半。

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